A convergent Plug-and-Play Majorization-Minimization algorithm for Poisson inverse problems
About
In this paper, we present a novel variational plug-and-play algorithm for Poisson inverse problems. Our approach minimizes an explicit functional which is the sum of a Kullback-Leibler data fidelity term and a regularization term based on a pre-trained neural network. By combining classical likelihood maximization methods with recent advances in gradient-based denoisers, we allow the use of pre-trained Gaussian denoisers without sacrificing convergence guarantees. The algorithm is formulated in the majorization-minimization framework, which guarantees convergence to a stationary point. Numerical experiments confirm state-of-the-art performance in deconvolution and tomography under moderate noise, and demonstrate clear superiority in high-noise conditions, making this method particularly valuable for nuclear medicine applications.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Deblurring | CBSD68 (val) | PSNR26.47 | 140 | |
| Poisson Image Deblurring | Kodak (test) | PSNR (Gaussian)26.69 | 21 | |
| CT Reconstruction | AAP Mayo 64 angles (test) | PSNR35.64 | 15 | |
| CT Reconstruction | AAP Mayo 128 angles (test) | PSNR36.44 | 15 | |
| CT Reconstruction | AAP Mayo 192 angles (test) | PSNR36.4 | 15 |